Revenue allocation for interfirm collaboration on carbon emission reduction: complete information in a big data context

Bin Zhang, Qingyao Xin, Min Tang, Niu Niu, Heran Du, Xiqiang Chang, Zhaohua Wang*

*Corresponding author for this work

    Research output: Contribution to journalArticlepeer-review

    29 Citations (Scopus)

    Abstract

    Though interfirm collaboration on carbon emission reduction, the cross-enterprise flow of emission reduction resources and improved efficiency in greenhouse gas reduction can be realized. Especially in the context of big data, enterprises can find suitable partners for emission reduction faster and more accurately through interfirm collaboration. However, similar to other cooperative modes, revenue allocation is the key to ensuring the stability of the collaborative emission reduction system. Based on the premise of carbon trading, this paper discusses revenue allocation among enterprises participating in the collaborative emission reduction process under complete information in a big data context. Specifically, we constructed a Shapley value analysis model of revenue allocation for interfirm collaboration on carbon emission reduction, and amended this model with investment cost and risk-bearing. Consequently, this research provides not only a theoretical basis for solving the problem of revenue distribution in the process of collaborative emission reductions among enterprises but also a theoretical guide for enterprises countermeasures following the completion of China's future carbon trading mechanism.

    Original languageEnglish
    Pages (from-to)93-116
    Number of pages24
    JournalAnnals of Operations Research
    Volume316
    Issue number1
    DOIs
    Publication statusPublished - Sept 2022

    Keywords

    • Big data
    • Carbon emission reduction
    • Collaborative emission reduction
    • Revenue allocation

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